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Colloquium

Science 2.0 - Evolving the Scientific Method in the Age of AI

Speaker: Lior Horesh (IBM)

Principal Research Scientist, Master Inventor and Senior Manager of the ‎Mathematics & Theoretical Computer Science Department

IBM

Wednesday, September 17, 2025

11:30AM - 1:00PM

Lunch in 1307 from 11:30-12:00pm
Talk in 1327 from 12:00-1:00pm

Location: Yale Institute for Foundations of Data Science, Kline Tower 13th Floor, Room 1327, New Haven, CT 06511 and via Webcast: https://yale.hosted.panopto.com/Panopto/Pages/Viewer.aspx?id=f2a42bcc-604a-4504-bb8b-b3550102a10f

Talk summary: The scientific method has driven humanity’s intellectual progress for centuries, yet growing concerns about scientific stagnation demand fundamental reexamination of its foundations. The emergence of large-scale AI systems: statistical, generative, and symbolic, presents both unprecedented opportunity and necessity to reconceptualize scientific discovery itself. Historically, scientific models emerged through manual, first-principles deductive approaches that yielded interpretable symbolic frameworks with remarkable universality despite limited data. While time-consuming and expertise-dependent, these methods contrasted sharply with modern data-driven techniques that enable rapid automated development but often produce non-interpretable models requiring extensive training data with poor out-of-distribution generalization. This lecture explores emerging approaches to mathematical model discovery, that transcend this historical divide, by connecting inductive, data-driven techniques with deductive, knowledge-based reasoning. We highlight two hybrid frameworks: AI-Descartes, a generator-verifier duo paradigm that couples hypothesis induction with deductive formal validation against background theory, and AI-Hilbert, which unifies hypothesis generation and testing into a single process. Further, we also introduce an algebraic-geometric perspective on model discovery and discuss AI-Noether, a framework for revising background theory itself via abductive reasoning. Ultimately, we advocate for a conceptual evolution of the scientific method, beyond mere automation, toward deeper integration of AI in the pursuit of interpretable, universal models.

Speaker bio: Dr. Lior Horesh is a Principal Research Scientist, Master Inventor and a Senior Manager of the ‎Mathematics & Theoretical Computer Science (formerly Mathematics of AI) department at IBM Research. His department’s mission is to approach some of the big ‎challenges the field of AI is facing, from a principled mathematical angle. This involves conceiving ‎and bringing in state-of-the-art mathematical theories, algorithms and analysis tools, in hope of ‎advancing fundamentally reasoning, generalizability, scalability, interpretability of AI.

Additionally, Dr. Horesh ‎holds an adjunct Associate Professor position at the Computer Science department of Columbia ‎University where he teaches graduate level Advanced Machine Learning and Quantum Computing ‎courses. Dr. Horesh Received his Ph.D. in 2006 from UCL and joined IBM in 2009.

Dr. Horesh’s research ‎work focuses on algorithmic and theoretical aspects of tensor algebra, numerical analysis, simulation ‎of complex systems, inverse problems, non-linear optimization, experimental design, machine learning, quantum ‎computing and the interplay between deductive logic derivation (first-principles modelling) and inductive statistical AI in the context of symbolic scientific discovery.

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